Modelling for Combinatorial Optimisation

5 credits

Syllabus, Master's level, 1DL451

Code
1DL451
Education cycle
Second cycle
Main field(s) of study and in-depth level
Computer Science A1N
Grading system
Fail (U), Pass (3), Pass with credit (4), Pass with distinction (5)
Finalised by
The Faculty Board of Science and Technology, 30 August 2018
Responsible department
Department of Information Technology

Entry requirements

120 credits including Basic Course in Mathematics, Algebra I, and 10 credits in programming or another combination of courses containing basic concepts in algebra, combinatorics, logic, graph theory, set theory and implementation of (basic) search algorithms. Proficiency in English equivalent to the Swedish upper secondary course English 6.

Learning outcomes

On completion of the course, the student should be able to:

  • define the concept of combinatorial (optimisation or satisfaction) problem
  • explain the concept of constraint, as used in a constraint-based modelling language
  • model a combinatorial problem in a constraint-based solving-technology-independent modelling language
  • compare (empirically) several models, say by introducing redundancy or by detecting and breaking symmetries
  • describe and compare solving technologies that can be used by the backends to a constraint-based modelling language, including constraint programming, local search, Boolean satisfiability (modulo theories), and mixed integer programming
  • choose suitable solving technologies for a combinatorial problem, and motivate this choice
  • present and discuss topics related to the course content, orally and in writing, with a skill appropriate for the level of education

Content

The use of tools for solving a combinatorial problem, by first modelling it in a solving-technology-independent constraint-based modelling language and then running the model on an off-the-shelf solver.

Instruction

Lectures, help sessions, solution sessions and project

Assessment

Oral and written presentations of assignments (3 credits).

Oral and written presentations of a project (2 credits).

If there are special reasons for doing so, an examiner may make an exception from the method of assessment indicated and allow a student to be assessed by another method. An example of special reasons might be a certificate regarding special pedagogical support from the disability coordinator of the university.

Other directives

This course cannot be included in the same degree as 1DL448 Modelling for Combinatorial Optimisation or 1DL449 Constraint Modelling for Combinatorial Optimisation or 1DL441 Combinatorial Optimisation using Constraint Programming.

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